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Combination and comparison of multivariate analysis for the identification of orange varieties using visible and near infrared reflectance spectroscopy

机译:可见和近红外反射光谱法多变量分析的组合和比较,用于鉴定橙色品种

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摘要

A study of multivariate analysis for orange varieties was carried out, and the potential of visible and near infrared reflectance spectroscopy (Vis/NIRS) for its ability to nondestructively differentiate orange varieties was evaluated. A total of 320 orange samples (80 for each variety) were investigated for Vis/NIRS on 325–1075 nm using a field spectroradiometer. Multivariate classification methods including principal component analysis (PCA), back propagation neural network (BPNN) and partial least squares discriminant analysis (PLSDA) were adopted to classify oranges. Sixteen principal components from PCA were used as the input of BPNN model, and the identification accuracy of four orange varieties reached 100%. The prediction result of PLSDA, i.e., standard error of prediction (SEP) 0.24497, correlation coefficient (R) 0.97843, root mean square error of prediction (RMSEP) 0.24268, and identification accuracy 90% indicate that PLSDA is an alternative model for orange identification. With the comparison of these two models, it shows that BPNN combined with PCA obtained better classification effect than that of PLSDA. The overall results demonstrate that Vis/NIRS technology with multivariate analysis models is promising for the rapid and reliable determination for identification of orange varieties.
机译:对橙子品种进行了多变量分析研究,并评估了可见光和近红外反射光谱法(Vis / NIRS)对橙子无损鉴别的能力。使用现场分光辐射计对总共320个橙色样品(每个品种80个)的Vis / NIRS进行了325-1075 nm的研究。采用包括主成分分析(PCA),反向传播神经网络(BPNN)和偏最小二乘判别分析(PLSDA)在内的多元分类方法对橘子进行分类。将PCA的16个主要成分用作BPNN模型的输入,四个橙子品种的识别精度达到100%。 PLSDA的预测结果,即预测的标准误差(SEP)0.24497,相关系数(R)0.97843,预测的均方根误差(RMSEP)0.24268和识别精度90%表​​明,PLSDA是橙汁识别的替代模型。通过对这两种模型的比较,表明BPNN与PCA的结合取得了比PLSDA更好的分类效果。总体结果表明,具有多元分析模型的Vis / NIRS技术有望快速,可靠地确定橙子品种。

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